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POHMM/SVM: A Hybrid Approach for Keystroke Biometric User Authentication

机译:POHMM / SVM:击键生物识别用户身份验证的混合方法

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There are mainly two kinds of statistical models are found in keystroke biometrics namely discriminative model and generative model. The support vector machine (SVM) is a popular discriminative models used in keystroke biometric systems for the last decade due to a higher accuracy rate for large datasets. On the other hand., the hidden Markov model (HMM)., a generative model., has proven to be a useful and efficient tool., especially in speech recognition. However., its performance is poor in keystroke biometrics compared to other models.. An extension of HMM - partially observable hidden Markov model (POHMM) has shown better performance in handling missing or infrequent data. In an attempt to reach efficiency., this study proposes a hybrid POHMM/SVM approach for user authentication taking advantage of both generative and discriminative models. POHMM has been used as the features extractor., and the one-class support vector machine as the anomaly detector. The proposed POHMM/SVM model has achieved 0.086 of average equal-error rate (EER) on CMU keystroke benchmark dataset across all subjects and the standard deviation is 0.063. Using the same evaluation procedure described in the supplemental paper for CMU benchmark keystroke dataset., the proposed model has shown substantial decrease in the EER over other published methods.
机译:主要有两种统计模型,在击键生物识别结构中发现了判别鉴别模型和生成模型。支持向量机(SVM)是在最后十年中用于击键生物识别系统的流行辨别模型,由于大型数据集的准确率更高。另一方面,隐藏的马尔可夫模型(HMM)。,生成模型,已被证明是一个有用和有效的工具。,特别是在语音识别中。然而,与其他模型相比,它们的性能在击键生物识别中差..迁移嗯 - 部分观察到的隐马尔可夫模型(POHMM)在处理缺失或不常见的数据方面表现出更好的性能。为了达到效率。这项研究提出了一种用于用户认证的混合POHMM / SVM方法,利用生成和鉴别模型。 POHMM已被用作特征提取器。和单级支持向量机作为异常探测器。所提出的POHMM / SVM模型在所有科目的CMU击键基准数据集上实现了0.086(EER),并且标准偏差为0.063。使用用于CMU基准击键数据集的补充纸中描述的相同的评估程序。,所提出的模型在其他公开的方法中显示了EER的实质性减少。

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